| Literature DB >> 33927273 |
Daniel H Blustein1, Ahmed W Shehata2, Erin S Kuylenstierna3, Kevin B Englehart4, Jonathon W Sensinger4.
Abstract
When a person makes a movement, a motor error is typically observed that then drives motor planning corrections on subsequent movements. This error correction, quantified as a trial-by-trial adaptation rate, provides insight into how the nervous system is operating, particularly regarding how much confidence a person places in different sources of information such as sensory feedback or motor command reproducibility. Traditional analysis has required carefully controlled laboratory conditions such as the application of perturbations or error clamping, limiting the usefulness of motor analysis in clinical and everyday environments. Here we focus on error adaptation during unperturbed and naturalistic movements. With increasing motor noise, we show that the conventional estimation of trial-by-trial adaptation increases, a counterintuitive finding that is the consequence of systematic bias in the estimate due to noise masking the learner's intention. We present an analytic solution relying on stochastic signal processing to reduce this effect of noise, producing an estimate of motor adaptation with reduced bias. The result is an improved estimate of trial-by-trial adaptation in a human learner compared to conventional methods. We demonstrate the effectiveness of the new method in analyzing simulated and empirical movement data under different noise conditions.Entities:
Year: 2021 PMID: 33927273 PMCID: PMC8085004 DOI: 10.1038/s41598-021-88688-5
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Conventional trial-by-trial adaptation rates increase with increased control noise. Publicly available data[25] from a movement task with three different controllers of different noise levels. Regression-based trial-by-trial adaptation rates increase with controllers that have increased control noise. Figure adapted from[11] to display absolute values of trial-by-trial adaptation rates and omit amputee participant data. In the originating study, the control noise parameter of a hierarchical Kalman filter model was tuned to fit experimental data to generate the estimates of control noise for each controller type presented on the x-axis[11].
Summary of variable definitions.
| Variable Name | Definition—Descriptive | Definition—Expression |
|---|---|---|
| Control noise with variance | ||
| Sensory feedback noise with variance | ||
| Internal model noise | ||
| System dynamics | actual parameters, e.g. controller gain | |
| Estimated system dynamics | ||
| Motor command | ||
| Intended target | ||
| Result of | ||
| Measurable endpoint of movement | ||
| Sensed endpoint of movement | ||
| Posterior estimate of movement endpoint |
Figure 2Overview of the movement generation framework during a task of tossing a ball to hit a target. In the Planning phase, the thrower generates a motor command that, in a noise-free environment, will result in a specific ball landing point In other words, a control action is formed using an inverse model of the user's estimate of system dynamics , and is obtained by propagating this action through the actual dynamics : []. The difference between and the intended target represents misestimation of system parameters that are continually updated through the learning process. In the Movement phase, the throw is completed with being affected by control noise to produce the actual measurable position . In the Sensing phase, the actual movement endpoint is corrupted by feedback noise ), resulting in the endpoint sensed by the thrower . In the Perceiving phase, a posterior estimate of the landing point is arrived at by combining information from the intended endpoint , the sensed endpoint , and the level of internal model noise [1,11].
Figure 3Conventional trial-by-trial adaptation does not capture the expected dynamics of human motor performance. (a) Simulated adaptation rate values with changing control noise (Q). The shaded area indicates one standard deviation above and below the mean (solid line). Results from 1,000 simulations at each of 100 values of Q across the range indicated with , and . (b) Simulated adaptation rate values with changing sensory noise (R). Simulation settings and parameters as in a except here All adaptation rates are shown as absolute values.
Figure 4Silver adaptation rates approximate gold standard adaptation rates. Simulated data for changing control noise (a) and sensory noise (b). Silver adaptation rates can be calculated from data collected in carefully controlled experiments [4]. Simulation parameters as in Fig. 3.
Figure 5Comparison of different trial-by-trial adaptation rate calculation methods. (a–b) Simulation and parameter settings as in Fig. 3 for changing control noise with R = 1 (a) and changing sensory noise with Q = 1 (b). For clarity, the one standard deviation shaded range is shown only for the analytic results (see Figs. 3 and 4 for variability shading for other analysis methods). (c, d) Performance of each analysis method shown in (a) and (b) as measured using the mean squared error compared to the gold adaptation rate for changing control noise (c) and sensory noise (d).
Figure 6Analyzing more trials reduces variability of results. 10,000 simulations were run with the following parameters: , , . Different windows of trials were analyzed on each simulation run with the shaded area indicating one standard deviation of the total results.
Figure 7Experimental setup. Participants controlled a blue cursor on a screen using a computer mouse. Endpoint only feedback was provided after each movement was completed. See Methods for detailed description of equipment and protocol.
Figure 8Performance of analysis techniques on empirical data. The means with standard deviation error bars comparing the three analysis methods run on data collected from 26 able-bodied participants completing a computer cursor movement study under different added noise conditions. Note that the silver adaptation rate and conventional estimate are equivalent with no added control noise. All pairwise differences within silver ARs and analytic ARs are statistically significant (ANOVA with Bonferroni-corrected post-hoc comparison, p < .001).